• Title/Summary/Keyword: Research performance-based class

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A Study on the Contents and Performance of drug Education among Elementary School Teachers (초등학교 교사의 약물교육 수행정도)

  • Jung Mi-Suck;Lee Hwa-Za;Kim Young-Hae;Kim Myung-Hee;Eo Yong-Sook
    • Child Health Nursing Research
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    • v.10 no.1
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    • pp.29-36
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    • 2004
  • Purpose: This study was attempted to find out the actual conditions of drug education among the elementary school teachers. Method: 468 teachers consists of nurse-teachers 175, class-room teachers 240 and athletics teachers 53 of the elementary schools in Pusan city were subjected for this study. The period was December 23th through December 28th, 2002 and collected data was analyzed by SPSSWIN program using frequency, percentage, mean, standard deviation and ANOVA. Result: The results of this study were as follows: 1. The average point of nurse-teachers performance(2.11) was higher than that of class-room teachers(1.37) and athletic teachers(1.56). 2. Practical difficulties of drug education was no system in the curriculum for nurse-teachers(22.9%), insufficient expert knowledge for class-room teachers(26.3%) and a lack of education materials for athletics teachers(37.7%). For more effective drug education, 25.7% of nurse-teachers hope to have more organized curriculum presentations, class-room teachers(24%) and athletics teachers(22.7%) hope that more various education materials will be developed. Conclusion: Based on this results, drug education contents is needed to supplement a drug use prevention program.

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Improvement of the Resistance Performance for a G/T 29ton Class Coastal Angling Fishing Boat based on Hull-form Design (선형설계를 통한 G/T 29톤급 근해채낚기 어선의 저항성능 개선)

  • Ha, Yoon-Jin;Lee, Young-Gill;Lee, Seung-Hee;Kim, Sang-Hyun;Yu, Jin-Won;Back, Young-Su;Bae, Dong-Gyun
    • Journal of the Society of Naval Architects of Korea
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    • v.51 no.6
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    • pp.521-529
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    • 2014
  • In this study, numerical simulations and model tests are performed for the hull-form development of a G/T 29ton class coastal angling fishing boat. The numerical simulations are mainly used for the design of bow hull-form and the resistance performance is improved by the adoption of high bulbous bow. And, the resistance performances of the existing boat and the designed boat are verified by the model tests. The results of the experiments and calculations show that the effective power of the designed boat is 13.6% less than that of the existing boat at design speed. Therefore, the results of this research could be used as one of the fundamental data for the design of G/T 29ton class coastal angling fishing boat.

A Study on the Problem Analysis and the Way of Improvement in Mathematical Performance Assessment (수학과 수행평가의 문제점 분석 및 그 개선방안에 관한 연구)

  • 정덕찬
    • Journal of the Korean School Mathematics Society
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    • v.3 no.2
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    • pp.133-154
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    • 2000
  • The purpose of this study is to analyze theoretically suggested performance test and find out the actual conditions is math class at high schools and to suggest some devices for improvement for the various problems. To achieve this goal of study, I applied a performance test to the first graders of high school for one semester, and analyzed various phenomena which appeared during its practice. I made several questionnaire based on the materials of an academic seminar, "Several questions and devices for the improvement on mathematics performance test" And through the analysis, I pointed several problems of the performance test and proposed alternative plans. Several practical alternatives can be suggested for the problems appeared in the operation of performance test. The most important thing than any other technical solution in teachers′ diverse endeavor and enthusiastic research attitude to overcome the difficulties. Teachers′ spontaneousness is the foundation to enhance their own specialty and eradicate the propriety of the performance test.

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Performance Comparison of Naive Bayesian Learning and Centroid-Based Classification for e-Mail Classification (전자메일 분류를 위한 나이브 베이지안 학습과 중심점 기반 분류의 성능 비교)

  • Kim, Kuk-Pyo;Kwon, Young-S.
    • IE interfaces
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    • v.18 no.1
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    • pp.10-21
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    • 2005
  • With the increasing proliferation of World Wide Web, electronic mail systems have become very widely used communication tools. Researches on e-mail classification have been very important in that e-mail classification system is a major engine for e-mail response management systems which mine unstructured e-mail messages and automatically categorize them. In this research we compare the performance of Naive Bayesian learning and Centroid-Based Classification using the different data set of an on-line shopping mall and a credit card company. We analyze which method performs better under which conditions. We compared classification accuracy of them which depends on structure and size of train set and increasing numbers of class. The experimental results indicate that Naive Bayesian learning performs better, while Centroid-Based Classification is more robust in terms of classification accuracy.

Apparel Pattern CAD Education Based on Blended Learning for I-Generation (I-세대의 어패럴캐드 교육을 위한 블렌디드 러닝 활용 제안)

  • Choi, Young Lim
    • The Korean Fashion and Textile Research Journal
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    • v.18 no.6
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    • pp.766-775
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    • 2016
  • In the era of globalization and unlimited competition, Korean universities need a breakthrough in their education system according to the changing education landscape, such as lower graduation requirements to cultivate more multi-talented convergence leaders. While each student has different learning capabilities, which results in different performance and achievements in the same class, the uniform education that most universities are currently offering fails to accommodate such differences. Blended learning, synergically combining offline and online classes, enlarges learning space and enriches learning experiences through diversified tools and materials, including multimedia. Recently, universities are increasingly adopting video contents and on-offline convergence learning strategy. Thus, this study suggests a teaching method based on blended learning to more effectively teach existing pattern CAD and virtual CAD in the Apparel Pattern CAD class. To this end, this researcher developed a teaching-learning method and curriculum according to the blended learning phase and video-based contents. The curriculum consisted of 2D CAD (SuperAlpha: Plus) and 3D CAD (CLO) software learning for 15 weeks. Then, it was loaded to the Learning Management System (LMS) and operated for 15 weeks both online and offline. The performance analysis of LMS usage found that class materials, among online postings, were viewed the most. The discussion menu most accurately depicted students' participation, and students who did not participate in discussions were estimated to check postings less than participating students. A survey on the blended learning found that students prefer digital or more digitized classes, while preferring face to face for Q&As.

Development of Maintenance Scenario Method for Small and Medium-sized Bridges Using Risk Matrix (리스크매트릭스를 활용한 중소규모 교량의 유지관리 시나리오 기법 개발)

  • Park, Hyun-Chan;Shin, Byoung-Gil;Cho, Choong-Yuen;Kim, Young-Min;Chang, Buhm-Soo
    • Journal of the Korea institute for structural maintenance and inspection
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    • v.25 no.6
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    • pp.161-168
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    • 2021
  • This paper is a maintenance system for bridge represented by Class 3 and other than by law bridges. Domestic bridge are divided into Class 1 & 2 bridges and Class 3 & other than by law bridges. The number of type 3 and other than by law bridges is very large. But, it is considered to be of relatively low importance compared to Class 1 & 2 Bridge Bridge. So, in this paper is propose a maintenance system and procedure for small & medium-sized bridges. However, because the number of small & medium-sized bridges is large, it is not possible to evaluate the performance of all bridges like Class 1 & 2 bridge. The reason is the lack of manpower and budget. Based on the Risk Matrix method, a maintenance procedure was created to select the bridge for which performance evaluation should be performed first. For this purpose, basic information of the bridge is used. And, the developed maintenance procedures were applied to the bridges in actual use.

Case Study: e-Learning for Management Sciences Course (e-러닝 기반 경영과학 강의방식에 관한 사례연구)

  • Um, Myoung-Yong;Kim, Tae-Ung
    • Korean Management Science Review
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    • v.26 no.3
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    • pp.37-54
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    • 2009
  • E-learning is a networked phenomenon allowing for instant revisions and distribution, and goes beyond training and instruction to the delivery of information and tools to improve performance. The proponents of e-learning emphasizes that students learn more effectively when they interact and are involved with other students participating in similar endeavors. The paper outlines the process of development and design of e-learning based Management Sciences course, with the aim of ensuring widespread use, in undergraduate business program. Experiences in introducing students to e-learning course are reported. Feedback from students has been very positive but also indicates the need for ongoing support and direction. In addition, a survey was used to identify the determinants of students' academic performance of Management Science, and PLS based model is developed to analyze the results. Statistical results concerning the hypothesized model are provided.

Performance of Ru-based Preferential Oxidation Catalyst and Natural Gas Fuel Processing System for 1 kW Class PEMFCs System (Ru계 촉매의 CO 선택적 산화 반응 및 1 kW급 천연가스 연료처리 시스템의 성능 연구)

  • Seo, Yu-Taek;Seo, Dong-Joo;Seo, Young-Seog;Roh, Hyun-Seog;Jeong, Jin-Hyeok;Yoon, Wang-Lai
    • Journal of Hydrogen and New Energy
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    • v.17 no.3
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    • pp.293-300
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    • 2006
  • KIER has been developing a Ru-based preferential oxidation catalysts and a novel fuel processing system to provide hydrogen rich gas to residential PEMFCs system. The catalytic activity of Ru-based catalysts was investigated at different Ru loading amount and different support structure. The obtained result indicated that 2 wt% loaded Ru-based catalyst supported on ${\alpha}-Al_2O_3$ showed high activity in low temperature range and suppressed the methanation reaction. The developed prototype fuel processor showed thermal efficiency of 78% as a HHV basis with methane conversion of 92%. CO concentration below 10 ppm in the produced gas is achieved with separate preferential oxidation unit under the condition of $[O_2]/[CO]=2.0$. The partial load operation have been carried out to test the performance of fuel processor from 40% to 80% load, showing stable methane conversion and CO concentration below 10 ppm. The durability test for the daily start-stop and 8 h operation procedure is under investigation and shows no deterioration of its performance after 50 start-stop cycles. In addition to the system design and development.

Conditional Generative Adversarial Network based Collaborative Filtering Recommendation System (Conditional Generative Adversarial Network(CGAN) 기반 협업 필터링 추천 시스템)

  • Kang, Soyi;Shin, Kyung-shik
    • Journal of Intelligence and Information Systems
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    • v.27 no.3
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    • pp.157-173
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    • 2021
  • With the development of information technology, the amount of available information increases daily. However, having access to so much information makes it difficult for users to easily find the information they seek. Users want a visualized system that reduces information retrieval and learning time, saving them from personally reading and judging all available information. As a result, recommendation systems are an increasingly important technologies that are essential to the business. Collaborative filtering is used in various fields with excellent performance because recommendations are made based on similar user interests and preferences. However, limitations do exist. Sparsity occurs when user-item preference information is insufficient, and is the main limitation of collaborative filtering. The evaluation value of the user item matrix may be distorted by the data depending on the popularity of the product, or there may be new users who have not yet evaluated the value. The lack of historical data to identify consumer preferences is referred to as data sparsity, and various methods have been studied to address these problems. However, most attempts to solve the sparsity problem are not optimal because they can only be applied when additional data such as users' personal information, social networks, or characteristics of items are included. Another problem is that real-world score data are mostly biased to high scores, resulting in severe imbalances. One cause of this imbalance distribution is the purchasing bias, in which only users with high product ratings purchase products, so those with low ratings are less likely to purchase products and thus do not leave negative product reviews. Due to these characteristics, unlike most users' actual preferences, reviews by users who purchase products are more likely to be positive. Therefore, the actual rating data is over-learned in many classes with high incidence due to its biased characteristics, distorting the market. Applying collaborative filtering to these imbalanced data leads to poor recommendation performance due to excessive learning of biased classes. Traditional oversampling techniques to address this problem are likely to cause overfitting because they repeat the same data, which acts as noise in learning, reducing recommendation performance. In addition, pre-processing methods for most existing data imbalance problems are designed and used for binary classes. Binary class imbalance techniques are difficult to apply to multi-class problems because they cannot model multi-class problems, such as objects at cross-class boundaries or objects overlapping multiple classes. To solve this problem, research has been conducted to convert and apply multi-class problems to binary class problems. However, simplification of multi-class problems can cause potential classification errors when combined with the results of classifiers learned from other sub-problems, resulting in loss of important information about relationships beyond the selected items. Therefore, it is necessary to develop more effective methods to address multi-class imbalance problems. We propose a collaborative filtering model using CGAN to generate realistic virtual data to populate the empty user-item matrix. Conditional vector y identify distributions for minority classes and generate data reflecting their characteristics. Collaborative filtering then maximizes the performance of the recommendation system via hyperparameter tuning. This process should improve the accuracy of the model by addressing the sparsity problem of collaborative filtering implementations while mitigating data imbalances arising from real data. Our model has superior recommendation performance over existing oversampling techniques and existing real-world data with data sparsity. SMOTE, Borderline SMOTE, SVM-SMOTE, ADASYN, and GAN were used as comparative models and we demonstrate the highest prediction accuracy on the RMSE and MAE evaluation scales. Through this study, oversampling based on deep learning will be able to further refine the performance of recommendation systems using actual data and be used to build business recommendation systems.

Image-to-Image Translation with GAN for Synthetic Data Augmentation in Plant Disease Datasets

  • Nazki, Haseeb;Lee, Jaehwan;Yoon, Sook;Park, Dong Sun
    • Smart Media Journal
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    • v.8 no.2
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    • pp.46-57
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    • 2019
  • In recent research, deep learning-based methods have achieved state-of-the-art performance in various computer vision tasks. However, these methods are commonly supervised, and require huge amounts of annotated data to train. Acquisition of data demands an additional costly effort, particularly for the tasks where it becomes challenging to obtain large amounts of data considering the time constraints and the requirement of professional human diligence. In this paper, we present a data level synthetic sampling solution to learn from small and imbalanced data sets using Generative Adversarial Networks (GANs). The reason for using GANs are the challenges posed in various fields to manage with the small datasets and fluctuating amounts of samples per class. As a result, we present an approach that can improve learning with respect to data distributions, reducing the partiality introduced by class imbalance and hence shifting the classification decision boundary towards more accurate results. Our novel method is demonstrated on a small dataset of 2789 tomato plant disease images, highly corrupted with class imbalance in 9 disease categories. Moreover, we evaluate our results in terms of different metrics and compare the quality of these results for distinct classes.